VPRS模型下一种增量学习算法的改进及复杂度分析

Xuguang Chen
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引用次数: 1

摘要

本文介绍了一种增量学习算法的改进,并通过复杂度分析对其性能进行了总结。该算法最初是在经典粗糙集理论的背景下提出的,利用概率决策表的层次结构作为分类器。变精度粗糙集模型(VPRS模型)是对经典粗糙集理论的扩展,具有独特的特点。在VPRS模型下实现时,需要对算法进行修改;例如,它的一些策略可以合并,并且需要额外的操作。最初,该算法被修改为一个专门适用于人脸识别领域的版本。本文进一步对算法进行了重新表述,使其具有应用于不同领域的潜力,并对其复杂性进行了分析。
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Modification and complexity analysis of an incremental learning algorithm under the VPRS model
This article introduced the modification of an incremental learning algorithm and summarized its performance via the complexity analysis. The algorithm was originally proposed in the context of classic rough set theory, utilizing the hierarchy of probabilistic decision tables as the classifier. The variable precision rough set model (VPRS model) is an extension of the classic rough set theory with unique features. When implemented under the VPRS model, the algorithm has to be modified; for example, some of its strategies can be merged and additional operations are required. Initially, the algorithm was modified into a version specifically suitable for the field of face recognition. This article further reformulated the algorithm so that it can be potentially applied in different areas and, after that, analyzed its complexity.
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